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Forecasting Elections in Multiparty Systems: A Bayesian Approach Combining Polls and Fundamentals

Published online by Cambridge University Press:  08 November 2018

Lukas F. Stoetzer*
Affiliation:
Department of Political Science, University of Zurich, Affolternstrasse 56, 8050 Zürich, Switzerland. Email: lukas.stoetzer@uzh.ch
Marcel Neunhoeffer
Affiliation:
Department of Political Science, University of Mannheim, A 5, 6, 68131 Mannheim, Germany. Email: marcel.neunhoeffer@gess.uni-mannheim.de, gschwend@uni-mannheim.de, sebastian.sternberg@gess.uni-mannheim.de
Thomas Gschwend
Affiliation:
Department of Political Science, University of Mannheim, A 5, 6, 68131 Mannheim, Germany. Email: marcel.neunhoeffer@gess.uni-mannheim.de, gschwend@uni-mannheim.de, sebastian.sternberg@gess.uni-mannheim.de
Simon Munzert
Affiliation:
Hertie School of Governance, Friedrichstr. 180, 10117 Berlin, Germany. Email: munzert@hertie-school.org
Sebastian Sternberg
Affiliation:
Department of Political Science, University of Mannheim, A 5, 6, 68131 Mannheim, Germany. Email: marcel.neunhoeffer@gess.uni-mannheim.de, gschwend@uni-mannheim.de, sebastian.sternberg@gess.uni-mannheim.de
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Abstract

We offer a dynamic Bayesian forecasting model for multiparty elections. It combines data from published pre-election public opinion polls with information from fundamentals-based forecasting models. The model takes care of the multiparty nature of the setting and allows making statements about the probability of other quantities of interest, such as the probability of a plurality of votes for a party or the majority for certain coalitions in parliament. We present results from two ex ante forecasts of elections that took place in 2017 and are able to show that the model outperforms fundamentals-based forecasting models in terms of accuracy and the calibration of uncertainty. Provided that historical and current polling data are available, the model can be applied to any multiparty setting.

Information

Type
Letter
Copyright
Copyright © The Author(s) 2018. Published by Cambridge University Press on behalf of the Society for Political Methodology. 
Figure 0

Figure 1. Forecast of the 2017 election 2 days prior to the election. Point estimates along with $\frac{5}{6}({\approx}83\%)$ (dark gray) credible intervals and $95\%$ (light gray) credible intervals, the light gray histogram bars represent the election results.

Figure 1

Figure 2. Development of the dynamic Bayesian forecasting model’s vote share predictions over time for the Federal election 2017, starting 148 days until the final prediction 2 days before the election. The light points show the mean prediction; dark gray bars depict the $\frac{5}{6}$ credible intervals and light gray bars the $95\%$ credible intervals. Each party’s observed vote share is indicated by the solid horizontal line. The mean forecast of the fundamentals Dirichlet regression model is marked by the dashed horizontal line. The dark points plot the monthly poll averages.

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